Do Not Change Me: On Transferring Entities Without Modification in Neural Machine Translation - a Multilingual Perspective

Dawid Wiśniewski, Mikołaj Pokrywka, Zofia Rostek


Abstract
Current machine translation models provide us with high-quality outputs in most scenarios. However, they still face some specific problems, such as detecting which entities should not be changed during translation. In this paper, we explore the abilities of popular NMT models, including models from the OPUS project, Google Translate, MADLAD, and EuroLLM, to preserve entities such as URL addresses, IBAN numbers, or emails when producing translations between four languages: English, German, Polish, and Ukrainian. We investigate the quality of popular NMT models in terms of accuracy, discuss errors made by the models, and examine the reasons for errors. Our analysis highlights specific categories, such as emojis, that pose significant challenges for many models considered. In addition to the analysis, we propose a new multilingual synthetic dataset of 36,000 sentences that can help assess the quality of entity transfer across nine categories and four aforementioned languages.
Anthology ID:
2025.mtsummit-1.19
Volume:
Proceedings of Machine Translation Summit XX: Volume 1
Month:
June
Year:
2025
Address:
Geneva, Switzerland
Editors:
Pierrette Bouillon, Johanna Gerlach, Sabrina Girletti, Lise Volkart, Raphael Rubino, Rico Sennrich, Ana C. Farinha, Marco Gaido, Joke Daems, Dorothy Kenny, Helena Moniz, Sara Szoc
Venue:
MTSummit
SIG:
Publisher:
European Association for Machine Translation
Note:
Pages:
248–264
Language:
URL:
https://preview.aclanthology.org/mtsummit-25-ingestion/2025.mtsummit-1.19/
DOI:
Bibkey:
Cite (ACL):
Dawid Wiśniewski, Mikołaj Pokrywka, and Zofia Rostek. 2025. Do Not Change Me: On Transferring Entities Without Modification in Neural Machine Translation - a Multilingual Perspective. In Proceedings of Machine Translation Summit XX: Volume 1, pages 248–264, Geneva, Switzerland. European Association for Machine Translation.
Cite (Informal):
Do Not Change Me: On Transferring Entities Without Modification in Neural Machine Translation - a Multilingual Perspective (Wiśniewski et al., MTSummit 2025)
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PDF:
https://preview.aclanthology.org/mtsummit-25-ingestion/2025.mtsummit-1.19.pdf